Center for Comparative and International Studies, Eidgenössische Technische Hochschule Zurich, 8092 Zurich, Switzerland;
Immigration Policy Lab, Eidgenössische Technische Hochschule Zurich, 8092 Zurich, Switzerland.
Proc Natl Acad Sci U S A. 2021 Dec 14;118(50). doi: 10.1073/pnas.2116310118.
Despite heightened awareness of the detrimental impact of hate speech on social media platforms on affected communities and public discourse, there is little consensus on approaches to mitigate it. While content moderation-either by governments or social media companies-can curb online hostility, such policies may suppress valuable as well as illicit speech and might disperse rather than reduce hate speech. As an alternative strategy, an increasing number of international and nongovernmental organizations (I/NGOs) are employing counterspeech to confront and reduce online hate speech. Despite their growing popularity, there is scant experimental evidence on the effectiveness and design of counterspeech strategies (in the public domain). Modeling our interventions on current I/NGO practice, we randomly assign English-speaking Twitter users who have sent messages containing xenophobic (or racist) hate speech to one of three counterspeech strategies-empathy, warning of consequences, and humor-or a control group. Our intention-to-treat analysis of 1,350 Twitter users shows that empathy-based counterspeech messages can increase the retrospective deletion of xenophobic hate speech by 0.2 SD and reduce the prospective creation of xenophobic hate speech over a 4-wk follow-up period by 0.1 SD. We find, however, no consistent effects for strategies using humor or warning of consequences. Together, these results advance our understanding of the central role of empathy in reducing exclusionary behavior and inform the design of future counterspeech interventions.
尽管人们越来越意识到社交媒体平台上仇恨言论对受影响社区和公共话语的有害影响,但对于如何减轻仇恨言论的影响,几乎没有共识。虽然内容审查——无论是由政府还是社交媒体公司进行——可以遏制网络上的敌意,但这些政策可能会压制有价值的和非法的言论,并且可能会分散而不是减少仇恨言论。作为一种替代策略,越来越多的国际和非政府组织(I/NGO)正在采用反驳言论来对抗和减少网络仇恨言论。尽管它们越来越受欢迎,但关于反驳言论策略的有效性和设计(在公共领域)的实验证据很少。我们根据当前的 I/NGO 实践来模拟我们的干预措施,将发送包含仇外(或种族主义)仇恨言论的消息的英语使用者随机分配到三种反驳言论策略——同理心、警告后果和幽默——或对照组中。我们对 1350 名 Twitter 用户的意向性治疗分析表明,基于同理心的反驳言论信息可以使回顾性删除仇外仇恨言论增加 0.2 个标准差,并且可以在 4 周的随访期间减少前瞻性的仇外仇恨言论的产生 0.1 个标准差。然而,我们没有发现使用幽默或警告后果的策略有一致的效果。总之,这些结果增进了我们对同理心在减少排外行为中的核心作用的理解,并为未来反驳言论干预措施的设计提供了信息。